Parameterized Distributed Algorithms

07/13/2018
by   Ran Ben Basat, et al.
0

In this work, we initiate a thorough study of parameterized graph optimization problems in the distributed setting. In a parameterized problem, an algorithm decides whether a solution of size bounded by a parameter k exists and if so, it finds one. We study fundamental problems, including Minimum Vertex Cover (MVC), Maximum Independent Set (MaxIS), Maximum Matching (MaxM), and many others, in both the LOCAL and CONGEST distributed computation models. We present lower bounds for the round complexity of solving parameterized problems in both models, together with optimal and near-optimal upper bounds. Our results extend beyond the scope of parameterized problems. We show that any LOCAL (1+ϵ)-approximation algorithm for the above problems must take Ω(ϵ^-1) rounds. Joined with the algorithm of [GKM17] and the Ω(√( n/ n)) lower bound of [KMW16], this settles the complexity of (1+ϵ)-approximating MVC, MaxM and MaxIS at (ϵ^-1 n)^Θ(1). We also show that our parameterized approach reduces the runtime of exact and approximate CONGEST algorithms for MVC and MaxM if the optimal solution is small, without knowing its size beforehand. Finally, we propose the first deterministic o(n^2) rounds CONGEST algorithms that approximate MVC and MaxM within a factor strictly smaller than 2.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/10/2022

Near-Optimal Distributed Dominating Set in Bounded Arboricity Graphs

We describe a simple deterministic O( ε^-1logΔ) round distributed algori...
research
05/30/2022

Near Optimal Bounds for Replacement Paths and Related Problems in the CONGEST Model

We present several results in the CONGEST model on round complexity for ...
research
05/02/2023

The Complexity of Distributed Approximation of Packing and Covering Integer Linear Programs

In this paper, we present a low-diameter decomposition algorithm in the ...
research
11/11/2022

A parameterized halting problem, Δ_0 truth and the MRDP theorem

We study the parameterized complexity of the problem to decide whether a...
research
11/06/2019

Distributed MST: A Smoothed Analysis

We study smoothed analysis of distributed graph algorithms, focusing on ...
research
05/18/2022

Deterministic Near-Optimal Distributed Listing of Cliques

The importance of classifying connections in large graphs has been the m...
research
09/27/2019

On the Approximation Ratio of the k-Opt and Lin-Kernighan Algorithm for Metric TSP

The k-Opt and Lin-Kernighan algorithm are two of the most important loca...

Please sign up or login with your details

Forgot password? Click here to reset